Nowadays, user's privacy is a critical matter in multimedia social networks. However, traditional machine learning anomaly detection techniques that rely on user's log files and behavioral patterns are not sufficient to preserve it. Hence, the social network security should have multiple security measures to take into account additional information to protect user's data. More precisely, access control models could complement machine learning algorithms in the process of privacy preservation. The models could use further information derived from the user's profiles to detect anomalous users. In this paper, we implement a privacy preservation algorithm that incorporates supervised and unsupervised machine learning anomaly detection techniques with access control models. Due to the rich and fine-grained policies, our control model continuously updates the list of attributes used to classify users. It has been successfully tested on real datasets, with over 95% accuracy using Bayesian classifier, and 95.53% on receiver operating characteristic curve using deep neural networks and long short-term memory recurrent neural network classifiers. Experimental results show that this approach outperforms other detection techniques such as support vector machine, isolation forest, principal component analysis, and Kolmogorov-Smirnov test.
CITATION STYLE
Aljably, R., Tian, Y., & Al-Rodhaan, M. (2020). Preserving Privacy in Multimedia Social Networks Using Machine Learning Anomaly Detection. Security and Communication Networks, 2020. https://doi.org/10.1155/2020/5874935
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